2020
DOI: 10.1109/jbhi.2020.2978252
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Activity Recognition From Newborn Resuscitation Videos

Abstract: Birth asphyxia is one of the leading causes of neonatal deaths. A key for survival is performing immediate and continuous quality newborn resuscitation. A dataset of recorded signals during newborn resuscitation, including videos, has been collected in Haydom, Tanzania, and the aim is to analyze the treatment and its effect on the newborn outcome. An important step is to generate timelines of relevant resuscitation activities, including ventilation, stimulation, suction, etc., during the resuscitation episodes… Show more

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Cited by 18 publications
(11 citation statements)
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“…The data collection also includes the preparation of an existing VL video dataset of newborn resuscitation from Haydom Lutheran hospital in Tanzania (481 VL videos) [30] collected during the Safer Births study [27], and from SUS (237 VL videos) collected as part of the NeoBeat study [32]. The Safer Births and NeoBeat studies are ongoing and new data will also be included.…”
Section: Other Data Included In the Studymentioning
confidence: 99%
“…The data collection also includes the preparation of an existing VL video dataset of newborn resuscitation from Haydom Lutheran hospital in Tanzania (481 VL videos) [30] collected during the Safer Births study [27], and from SUS (237 VL videos) collected as part of the NeoBeat study [32]. The Safer Births and NeoBeat studies are ongoing and new data will also be included.…”
Section: Other Data Included In the Studymentioning
confidence: 99%
“…Papers published by the group range from epidemiological studies and studies to evaluate cost effectiveness of interventions 192,[225][226][227][228][229] via studies of machine learning for automatic interpretation of data [230][231][232] to studies to describe practise, 196 evaluate effect of training methodologies, [233][234][235][236] studies to improve understanding of the basic physiology of newborn transition and resuscitation 74,134,138,221,237 and RCTs to compare new equipment to existing standards. 238,239…”
Section: Helping Babies Breathementioning
confidence: 99%
“…The first step is based on a deep learning system to detect objects such as bag-mask ventilator, suction devices, and health care hands [86]. Regions around these objects are proposed and used in a new network to recognize stimulation, ventilation, suction, and if the newborn is covered or uncovered [87]. The recognized activities are finally used to create timelines describing the resuscitation episode.…”
Section: Activity Recognition Using Deep Learning On Video Signalsmentioning
confidence: 99%